LGAISEJul 5, 2024

NeuFair: Neural Network Fairness Repair with Dropout

arXiv:2407.04268v319 citationsh-index: 9
Originality Incremental advance
AI Analysis

It addresses fairness issues in neural networks for socially critical applications, offering a less intrusive alternative to existing methods.

This paper tackles the problem of bias in deep neural networks by proposing NeuFair, a post-processing method that uses neuron dropout during inference to mitigate unfairness, achieving up to 69% improvement in fairness with minimal performance degradation.

This paper investigates neuron dropout as a post-processing bias mitigation for deep neural networks (DNNs). Neural-driven software solutions are increasingly applied in socially critical domains with significant fairness implications. While neural networks are exceptionally good at finding statistical patterns from data, they may encode and amplify existing biases from the historical data. Existing bias mitigation algorithms often require modifying the input dataset or the learning algorithms. We posit that the prevalent dropout methods that prevent over-fitting during training by randomly dropping neurons may be an effective and less intrusive approach to improve the fairness of pre-trained DNNs. However, finding the ideal set of neurons to drop is a combinatorial problem. We propose NeuFair, a family of post-processing randomized algorithms that mitigate unfairness in pre-trained DNNs via dropouts during inference after training. Our randomized search is guided by an objective to minimize discrimination while maintaining the model's utility. We show that our design of randomized algorithms is effective and efficient in improving fairness (up to 69%) with minimal or no model performance degradation. We provide intuitive explanations of these phenomena and carefully examine the influence of various hyperparameters of search algorithms on the results. Finally, we empirically and conceptually compare NeuFair to different state-of-the-art bias mitigators.

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